Machine learning in orbit estimation: A survey

被引:3
作者
Caldas, Francisco [1 ,2 ]
Soares, Claudia [1 ,2 ]
机构
[1] NOVA Sch Sci & Technol, P-2825149 Caparica, Portugal
[2] NOVA LINCS Comp Sci & Informat Dept, Costa Da Caparica, Portugal
关键词
Orbital mechanics; Machine learning; Deep learning; Low-earth orbit; Satellites; Atmospheric density models; Orbit determination; Orbit prediction; UNCERTAINTY PROPAGATION; SATELLITE DRAG; NEURAL-NETWORKS; SOLAR-ACTIVITY; MODEL; PREDICTION; CALIBRATION; FRAMEWORK; ELEMENTS; EXTENSION;
D O I
10.1016/j.actaastro.2024.03.072
中图分类号
V [航空、航天];
学科分类号
08 ; 0825 ;
摘要
Since the late 1950s, when the first artificial satellite was launched, the number of Resident Space Objects has steadily increased. It is estimated that around one million objects larger than one cm are currently orbiting the Earth, with only thirty thousand larger than ten cm being tracked. To avert a chain reaction of collisions, known as Kessler Syndrome, it is essential to accurately track and predict debris and satellites' orbits. Current approximate physics-based methods have errors in the order of kilometers for seven-day predictions, which is insufficient when considering space debris, typically with less than one meter. This failure is usually due to uncertainty around the state of the space object at the beginning of the trajectory, forecasting errors in environmental conditions such as atmospheric drag, and unknown characteristics such as the mass or geometry of the space object. Operators can enhance Orbit Prediction accuracy by deriving unmeasured objects' characteristics and improving non-conservative forces' effects by leveraging data-driven techniques, such as Machine Learning. In this survey, we provide an overview of the work in applying Machine Learning for Orbit Determination, Orbit Prediction, and atmospheric density modeling.
引用
收藏
页码:97 / 107
页数:11
相关论文
共 50 条
[31]   Machine Learning and Physics: A Survey of Integrated Models [J].
Seyyedi, Azra ;
Bohlouli, Mahdi ;
Oskoee, Seyedehsan Nedaaee .
ACM COMPUTING SURVEYS, 2024, 56 (05)
[32]   A survey of machine learning for Network-on-Chips [J].
Zhang, Xiaoyun ;
Dong, Dezun ;
Li, Cunlu ;
Wang, Shaocong ;
Xiao, Liquan .
JOURNAL OF PARALLEL AND DISTRIBUTED COMPUTING, 2024, 186
[33]   Secure and Robust Machine Learning for Healthcare: A Survey [J].
Qayyum, Adnan ;
Qadir, Junaid ;
Bilal, Muhammad ;
Al-Fuqaha, Ala .
IEEE REVIEWS IN BIOMEDICAL ENGINEERING, 2021, 14 :156-180
[34]   Machine Learning for Electronic Design Automation: A Survey [J].
Huang, Guyue ;
Hu, Jingbo ;
He, Yifan ;
Liu, Jialong ;
Ma, Mingyuan ;
Shen, Zhaoyang ;
Wu, Juejian ;
Xu, Yuanfan ;
Zhang, Hengrui ;
Zhong, Kai ;
Ning, Xuefei ;
Ma, Yuzhe ;
Yang, Haoyu ;
Yu, Bei ;
Yang, Huazhong ;
Wang, Yu .
ACM TRANSACTIONS ON DESIGN AUTOMATION OF ELECTRONIC SYSTEMS, 2021, 26 (05)
[35]   Cellular traffic prediction with machine learning: A survey [J].
Jiang, Weiwei .
EXPERT SYSTEMS WITH APPLICATIONS, 2022, 201
[36]   A review of predictive uncertainty estimation with machine learning [J].
Tyralis, Hristos ;
Papacharalampous, Georgia .
ARTIFICIAL INTELLIGENCE REVIEW, 2024, 57 (04)
[37]   Machine learning assisted quantum state estimation [J].
Lohani, Sanjaya ;
Kirby, Brian T. ;
Brodsky, Michael ;
Danaci, Onur ;
Glasser, Ryan T. .
MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2020, 1 (03)
[38]   Statistics and Machine Learning in Aviation Environmental Impact Analysis: A Survey of Recent Progress [J].
Gao, Zhenyu ;
Mavris, Dimitri N. .
AEROSPACE, 2022, 9 (12)
[39]   Survey of Machine Learning Accelerators [J].
Reuther, Albert ;
Michaleas, Peter ;
Jones, Michael ;
Gadepally, Vijay ;
Samsi, Siddharth ;
Kepner, Jeremy .
2020 IEEE HIGH PERFORMANCE EXTREME COMPUTING CONFERENCE (HPEC), 2020,
[40]   A survey on evolutionary machine learning [J].
Al-Sahaf, Harith ;
Bi, Ying ;
Chen, Qi ;
Lensen, Andrew ;
Mei, Yi ;
Sun, Yanan ;
Tran, Binh ;
Xue, Bing ;
Zhang, Mengjie .
JOURNAL OF THE ROYAL SOCIETY OF NEW ZEALAND, 2019, 49 (02) :205-228